基于支持向量机的高速铁路地震预警震级连续预测方法

Jindong Song, Jingbao Zhu, Shanyou Li
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引用次数: 2

摘要

目的利用日本K-net强震数据,研究基于支持向量机(SVM)的连续震级预测方法。设计/方法/方法在纵波到达后0.5 ~ 10.0 s范围内,以0.5 s为间隔建立预测时间窗,选取12个纵波特征参数作为模型输入参数,构建基于支持向量机的高速铁路地震预警(EEW)震级预测模型(SVM- hrm)。结果将SVM-HRM模型的震级预测结果与传统震级预测模型和高速铁路EEW电流范数进行了比较。结果表明,在3.0 s时间窗下,SVM-HRM模型的震级预测误差明显小于传统的τc法和Pd法。该模型对小震的过估计有明显改善,且模型的构建不受震中距离的影响,具有较好的泛化性能。对于3-5级地震事件,SVM-HRM模型在p波到达后0.5 s的单站检出率达到95%,优于《高速铁路EEW与监测系统试验方法》要求的第一次报警检出率标准。对于3 ~ 5级、5 ~ 7级和7 ~ 8级地震事件,SVM-HRM模型的单站变化率分别在p波到达后0.5 s、1.5 s和0.5 s,优于多站变化率常模。最迟在p波到达后1.5 s, SVM-HRM模型能够发出第一次符合震级预测实现率规范的地震报警,满足高速铁路震级预测的准确性和连续性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous prediction method of earthquake early warning magnitude for high-speed railway based on support vector machine
PurposeUsing the strong motion data of K-net in Japan, the continuous magnitude prediction method based on support vector machine (SVM) was studied.Design/methodology/approachIn the range of 0.5–10.0 s after the P-wave arrival, the prediction time window was established at an interval of 0.5 s. 12 P-wave characteristic parameters were selected as the model input parameters to construct the earthquake early warning (EEW) magnitude prediction model (SVM-HRM) for high-speed railway based on SVM.FindingsThe magnitude prediction results of the SVM-HRM model were compared with the traditional magnitude prediction model and the high-speed railway EEW current norm. Results show that at the 3.0 s time window, the magnitude prediction error of the SVM-HRM model is obviously smaller than that of the traditional τc method and Pd method. The overestimation of small earthquakes is obviously improved, and the construction of the model is not affected by epicenter distance, so it has generalization performance. For earthquake events with the magnitude range of 3–5, the single station realization rate of the SVM-HRM model reaches 95% at 0.5 s after the arrival of P-wave, which is better than the first alarm realization rate norm required by “The Test Method of EEW and Monitoring System for High-Speed Railway.” For earthquake events with magnitudes ranging from 3 to 5, 5 to 7 and 7 to 8, the single station realization rate of the SVM-HRM model is at 0.5 s, 1.5 s and 0.5 s after the P-wave arrival, respectively, which is better than the realization rate norm of multiple stations.Originality/valueAt the latest, 1.5 s after the P-wave arrival, the SVM-HRM model can issue the first earthquake alarm that meets the norm of magnitude prediction realization rate, which meets the accuracy and continuity requirements of high-speed railway EEW magnitude prediction.
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